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多相 MRI 图像纹理分析检测肝细胞癌中 Ki67 的表达。

Texture analysis of multi-phase MRI images to detect expression of Ki67 in hepatocellular carcinoma.

机构信息

Department of Radiology, First Affiliated Hospital of Fujian Medical University, Fuzhou, Fujian, 350005, China.

Department of Radiology, First Affiliated Hospital of Fujian Medical University, Fuzhou, Fujian, 350005, China.

出版信息

Clin Radiol. 2019 Oct;74(10):813.e19-813.e27. doi: 10.1016/j.crad.2019.06.024. Epub 2019 Jul 27.

Abstract

AIM

To determine whether texture analysis of preoperative magnetic resonance imaging (MRI) images could be used to detect Ki67 expression, a widely used cell proliferation marker in hepatocellular carcinoma (HCC).

MATERIALS AND METHODS

In total, 83 patients were included, 25 with low Ki67 (Ki67 ≤10%) HCC expression and 58 with high Ki67 (Ki67 ≥10%) HCC expression as demonstrated by retrospective surgical evaluation. All patients were examined using a 3 T MRI unit with one standard protocol. The region of interest was drawn manually by one radiologist. Texture analysis included histogram, co-occurrence matrix, run-length matrix, gradient, auto-regressive model, and wavelet transform features as calculated by MaZda (version 4.6; quantitative texture analysis software). The features reduced by the Fisher, probability of classification error, and average correlation coefficient (POE+ACC), mutual information were used to select the features that predicted Ki67 proliferation status with highest accuracy and then using the B11 program for data analysis and classification.

RESULTS

The misclassification rate of the principal component analysis (PCA) in the hepatobiliary phase (HBP), T2-weighted imaging (T2WI), arterial phase (AP), and portal vein phase (PVP) was 36/83 (43.37%), 35/82 (42.68%), 40/83 (48.19%), and 34/83 (40.96%), respectively. The misclassification of the linear discriminant analysis in HBP, T2WI, AP, and PVP phase was 13/83 (15.66%), 21/82 (25.61%), 9/83 (10.84%), and 8/83 (9.64%), respectively. The misclassification of the nonlinear discriminant analysis in HBP, T2WI, AP, and PVP phase was 7/83 (8.43%), 6/82 (7.32%), 5/83 (6.02%), and 7/83 (8.43%), respectively.

CONCLUSIONS

Texture analysis of HBP, AP, and PVP were helpful for predicting Ki67 expression and may provide a less-invasive method to investigate critical histopathology markers for HCC.

摘要

目的

确定术前磁共振成像(MRI)图像的纹理分析是否可用于检测 Ki67 表达,Ki67 是肝癌(HCC)中广泛使用的细胞增殖标志物。

材料和方法

总共纳入 83 例患者,其中 25 例 Ki67 表达较低(Ki67≤10%),58 例 Ki67 表达较高(Ki67≥10%),通过回顾性手术评估证实。所有患者均使用 3T MRI 设备和一个标准方案进行检查。由一位放射科医生手动绘制感兴趣区。纹理分析包括直方图、共生矩阵、游程长度矩阵、梯度、自回归模型和小波变换特征,由 MaZda(版本 4.6;定量纹理分析软件)计算。使用 Fisher、分类错误概率(POE)和平均相关系数(ACC)、互信息来选择预测 Ki67 增殖状态的特征,然后使用 B11 程序进行数据分析和分类。

结果

肝胆期(HBP)、T2 加权成像(T2WI)、动脉期(AP)和门静脉期(PVP)的主成分分析(PCA)的错误分类率分别为 36/83(43.37%)、35/82(42.68%)、40/83(48.19%)和 34/83(40.96%)。HBP、T2WI、AP 和 PVP 期线性判别分析的错误分类分别为 13/83(15.66%)、21/82(25.61%)、9/83(10.84%)和 8/83(9.64%)。HBP、T2WI、AP 和 PVP 期非线性判别分析的错误分类分别为 7/83(8.43%)、6/82(7.32%)、5/83(6.02%)和 7/83(8.43%)。

结论

HBP、AP 和 PVP 的纹理分析有助于预测 Ki67 表达,可能为研究 HCC 关键组织病理学标志物提供一种微创方法。

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